Facultad de Matemática, Astronomía, Física y Computación, Universidad Nacional de Córdoba, Ciudad Universitaria, Córdoba, 5000, Argentina.
Instituto de Física Enrique Gaviola (IFEG-CONICET), Ciudad Universitaria, Córdoba, 5000, Argentina.
Sci Rep. 2017 Nov 9;7(1):15186. doi: 10.1038/s41598-017-15428-z.
Chess is an emblematic sport that stands out because of its age, popularity and complexity. It has served to study human behavior from the perspective of a wide number of disciplines, from cognitive skills such as memory and learning, to aspects like innovation and decision-making. Given that an extensive documentation of chess games played throughout history is available, it is possible to perform detailed and statistically significant studies about this sport. Here we use one of the most extensive chess databases in the world to construct two networks of chess players. One of the networks includes games that were played over-the-board and the other contains games played on the Internet. We study the main topological characteristics of the networks, such as degree distribution and correlations, transitivity and community structure. We complement the structural analysis by incorporating players' level of play as node metadata. Although both networks are topologically different, we show that in both cases players gather in communities according to their expertise and that an emergent rich-club structure, composed by the top-rated players, is also present.
国际象棋是一项具有代表性的运动,它因其古老、普及和复杂而脱颖而出。它被广泛用于从认知技能(如记忆和学习)到创新和决策等方面研究人类行为。由于有大量历史上的国际象棋对局记录,因此可以对这项运动进行详细的、具有统计学意义的研究。在这里,我们使用了世界上最大的国际象棋数据库之一,构建了两个国际象棋棋手网络。其中一个网络包含线下对局,另一个则包含网络对局。我们研究了网络的主要拓扑特征,如度分布和相关性、传递性和社区结构。我们通过将棋手的等级作为节点元数据纳入结构分析来补充分析。尽管这两个网络在拓扑上有所不同,但我们表明,在这两种情况下,棋手都根据自己的专业知识聚集在社区中,并且存在一个由顶级棋手组成的新兴富者俱乐部结构。